Arrangement map for task planning and localization for an autonomous robot in a large-scale environment

P. Pinheiro, E. Cardozo, Jacques Wainer, E. Rohmer
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引用次数: 3

Abstract

This paper presents a planning approach for solving the global localization problem using an arrangement of rooms to compress the original map. The approach is based on architectural design features of the building such as walls and doors to help the robot on finding the best route to go. Lighter POMDP plans are generated only for representative rooms of the environment, decreasing size of the set of possible states. The plans are created offline only once and used indefinitely regardless of missions combining them online. The plan only requires as input, the environment map and the robot actions and possible observations. We demonstrate the single level approach and the map decomposition with experiments on both V-REP Simulator and the Pioneer 3DX robot. This approach allows the robot to perform both the localization and tasking in a large-scale environment.
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大尺度环境下自主机器人任务规划与定位的布局图
本文提出了一种利用房间排列压缩原始地图来解决全局定位问题的规划方法。该方法基于建筑物的建筑设计特征,如墙壁和门,以帮助机器人找到最佳路线。较轻的POMDP计划仅为环境的代表性房间生成,减少了可能状态集的大小。这些计划只能在离线状态下创建一次,并且可以无限期地使用,而不管在线任务是否将它们组合在一起。该计划只需要输入环境地图、机器人的行动和可能的观察。我们在V-REP模拟器和先锋3DX机器人上进行了实验,演示了单级方法和地图分解。这种方法允许机器人在大范围环境中进行定位和任务处理。
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